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SYBILFUSE: Combining Local Attributes with Global Structure to Perform Robust Sybil Detection

机译:SYBILFUSE:将局部属性与全局结构结合起来执行鲁棒的Sybil检测

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Sybil attacks are becoming increasingly widespread and pose a significant threat to online social systems; a single adversary can inject multiple colluding identities in the system to compromise security and privacy. Recent works have leveraged social network-based trust relationships to defend against Sybil attacks. However, existing defenses are based on oversimplified assumptions about network structure, which do not necessarily hold in real-world social networks. Recognizing these limitations, we propose SYBILFUSE, a defense-in-depth framework for Sybil detection when the oversimplified assumptions are relaxed. SYBILFUSE adopts a collective classification approach by first training local classifiers to compute local trust scores for nodes and edges, and then propagating the local scores through the global network structure via weighted random walk and loopy belief propagation mechanisms. We evaluate our framework on both synthetic and real-world network topologies, including a large-scale, labeled Twitter network comprising 20M nodes and 265M edges, and demonstrate that SYBILFUSE outperforms state-of-the-art approaches significantly. In particular, SYBILFUSE achieves 98% of Sybil coverage among top-ranked nodes.
机译:Sybil攻击正变得越来越普遍,对在线社交系统构成了重大威胁。单个对手可以在系统中注入多个共谋身份,以损害安全性和隐私性。最近的工作利用基于社交网络的信任关系来防御Sybil攻击。但是,现有的防御措施是基于关于网络结构的过于简化的假设,这些假设不一定适用于现实世界的社交网络。认识到这些局限性,我们提出了SYBILFUSE,这是一种在放松过分简化的假设后用于Sybil检测的纵深防御框架。 SYBILFUSE采用一种集体分类方法,首先训练局部分类器以计算节点和边缘的局部信任分数,然后通过加权随机游动和循环式信念传播机制在全局网络结构中传播局部分数。我们在综合和实际网络拓扑上评估了我们的框架,包括包含20M节点和265M边缘的大规模,带标签的Twitter网络,并证明SYBILFUSE明显优于最新方法。特别是,SYBILFUSE在排名靠前的节点中实现了Sybil覆盖率的98%。

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